BUILDING A MANAGEMENT SYSTEM OF HYDROTECHNICAL FACILITIES BASED ON FUZZY LOGIC ELEMENTS
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Abstract
In this article, the methods of creating a system based on fuzzy logic for the control of hydrotechnical structures are studied. In situations with multi-criteria and uncertain information in reservoir management, management systems are synthesized using fuzzy logic. With the help of fuzzy rules, control algorithms are developed that allow to optimize parameters such as flows entering and leaving the reservoir, reservoir volume and time. The study proposes to create based on uncertain rules for water resources management and thereby achieve the desired results. Using this approach, uncertain water resources can be identified and optimized.
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